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Main Authors: Iyengar, Garud, Lam, Henry, Wang, Tianyu
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2306.10081
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author Iyengar, Garud
Lam, Henry
Wang, Tianyu
author_facet Iyengar, Garud
Lam, Henry
Wang, Tianyu
contents In data-driven optimization, the sample performance of the obtained decision typically incurs an optimistic bias against the true performance, a phenomenon commonly known as the Optimizer's Curse and intimately related to overfitting in machine learning. Common techniques to correct this bias, such as cross-validation, require repeatedly solving additional optimization problems and are therefore computationally expensive. We develop a general bias correction approach, building on what we call Optimizer's Information Criterion (OIC), that directly approximates the first-order bias and does not require solving any additional optimization problems. Our OIC generalizes the celebrated Akaike Information Criterion to evaluate the objective performance in data-driven optimization, which crucially involves not only model fitting but also its interplay with the downstream optimization. As such it can be used for decision selection instead of only model selection. We apply our approach to a range of data-driven optimization formulations comprising empirical and parametric models, their regularized counterparts, and furthermore contextual optimization. Finally, we provide numerical validation on the superior performance of our approach under synthetic and real-world datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2306_10081
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Optimizer's Information Criterion: Dissecting and Correcting Bias in Data-Driven Optimization
Iyengar, Garud
Lam, Henry
Wang, Tianyu
Machine Learning
Optimization and Control
In data-driven optimization, the sample performance of the obtained decision typically incurs an optimistic bias against the true performance, a phenomenon commonly known as the Optimizer's Curse and intimately related to overfitting in machine learning. Common techniques to correct this bias, such as cross-validation, require repeatedly solving additional optimization problems and are therefore computationally expensive. We develop a general bias correction approach, building on what we call Optimizer's Information Criterion (OIC), that directly approximates the first-order bias and does not require solving any additional optimization problems. Our OIC generalizes the celebrated Akaike Information Criterion to evaluate the objective performance in data-driven optimization, which crucially involves not only model fitting but also its interplay with the downstream optimization. As such it can be used for decision selection instead of only model selection. We apply our approach to a range of data-driven optimization formulations comprising empirical and parametric models, their regularized counterparts, and furthermore contextual optimization. Finally, we provide numerical validation on the superior performance of our approach under synthetic and real-world datasets.
title Optimizer's Information Criterion: Dissecting and Correcting Bias in Data-Driven Optimization
topic Machine Learning
Optimization and Control
url https://arxiv.org/abs/2306.10081